Image Processing With Python

Image Processing With Python

DigitalSreeni via YouTube Direct link

16 - Understanding digital images for Python processing

1 of 86

1 of 86

16 - Understanding digital images for Python processing

Class Central Classrooms beta

YouTube playlists curated by Class Central.

Classroom Contents

Image Processing With Python

Automatically move to the next video in the Classroom when playback concludes

  1. 1 16 - Understanding digital images for Python processing
  2. 2 17 - Reading images in Python
  3. 3 18 - Image processing using pillow in Python
  4. 4 19 - image processing using scipy in Python
  5. 5 20 - Introduction to image processing using scikit-image in Python
  6. 6 21 - Scratch assay analysis with just 5 lines code in Python
  7. 7 22 - Denoising microscope images in Python
  8. 8 23 - Histogram based image segmentation in Python
  9. 9 24 - Random Walker segmentation in Python
  10. 10 25 - Reading Images, Splitting Channels, Resizing using openCV in Python
  11. 11 26 - Denoising and edge detection using opencv in Python
  12. 12 27 - CLAHE and Thresholding using opencv in Python
  13. 13 28 - Thresholding and morphological operations using openCV in Python
  14. 14 29 - Key points, detectors and descriptors in openCV
  15. 15 30 - Image registration using homography in openCV
  16. 16 32 - Grain size analysis in Python using a microscope image
  17. 17 33 - Grain size analysis in Python using watershed
  18. 18 34 - Grain size analysis in Python using watershed - multiple images
  19. 19 35 - Cell Nuclei analysis in Python using watershed segmentation
  20. 20 94 - Denoising MRI images (also CT & microscopy images)
  21. 21 95 - What is digital image filtering and image convolution?
  22. 22 96 - What is Gaussian Denoising Filter?
  23. 23 97 - What is median denoising filter?
  24. 24 98 - What is bilateral denoising filter?
  25. 25 99 - What is Non-local means (NLM) denoising filter?
  26. 26 100 - What is total variation (TV) denoising filter?
  27. 27 101 - What is block matching and 3D filtering (BM3D)?
  28. 28 102 - What is unsharp mask?
  29. 29 103 - Edge filters for image processing
  30. 30 104 - Ridge Filters to detect tube like structures in images
  31. 31 105 - What is Fourier Transform?
  32. 32 106 - Image filters using discrete Fourier transform (DFT)
  33. 33 112 - Averaging image stack in real and DCT space for denoising
  34. 34 113 - Histogram equalization and CLAHE
  35. 35 114 - Automatic image quality assessment using BRISQUE
  36. 36 115 - Auto segmentation using multi-otsu
  37. 37 Effect of Social Distancing on the spread of COVID-19 pandemic - A quick Python simulation
  38. 38 107 - Analysis of COVID-19 data using Python - Part 1
  39. 39 108 - Analysis of COVID-19 data using Python - Part 2
  40. 40 109 - Predicting COVID-19 cases using Python
  41. 41 110 - Visualizing COVID-19 cases & death information using Python and plotly
  42. 42 111 - What are the top 10 countries with highest COVID-19 cases and deaths?
  43. 43 116 - Measuring properties of labeled / segmented regions
  44. 44 117 - Shading correction using rolling ball background subtraction
  45. 45 118 - Object detection by template matching
  46. 46 119 - Sub-pixel image registration in Python
  47. 47 123 - Reference based image quality metrics
  48. 48 124 - Image quality by estimating sharpness
  49. 49 146 - Raspberry Pi - Learning python and deep learning on a tight budget
  50. 50 182 - How to batch process multiple images in python?
  51. 51 183 - OCR in python using keras-ocr
  52. 52 191 - Measuring image similarity in python
  53. 53 192 - Working with 3D and multi-dimensional images in python
  54. 54 199 - Detecting straight lines using Hough transform in python
  55. 55 200 - Image classification using gray-level co-occurrence matrix (GLCM) features and LGBM classifier
  56. 56 201 - Working with geotiff files using rasterio in python (also quick demo of NDVI calculation)
  57. 57 202 - Two ways to read HAM10000 dataset into python for skin cancer lesion classification
  58. 58 203 - Skin cancer lesion classification using the HAM10000 dataset
  59. 59 204 - U-Net for semantic segmentation of mitochondria
  60. 60 205 - U-Net plus watershed for instance segmentation
  61. 61 206 - The right way to segment large images by applying a trained U-Net model on smaller patches
  62. 62 207 - Using IoU (Jaccard) as loss function to train U-Net for semantic segmentation
  63. 63 208 - Multiclass semantic segmentation using U-Net
  64. 64 209 - Multiclass semantic segmentation using U-Net: Large images and 3D volumes (slice by slice)
  65. 65 210 - Multiclass U-Net using VGG, ResNet, and Inception as backbones
  66. 66 69 - Image classification using Bag of Visual Words (BOVW)
  67. 67 211 - U-Net vs LinkNet for multiclass semantic segmentation
  68. 68 212 - Classification of mnist sign language alphabets using deep learning
  69. 69 213 - Ensemble of networks for improved accuracy in deep learning
  70. 70 214 - Improving semantic segmentation (U-Net) performance via ensemble of multiple trained networks
  71. 71 215 - 3D U-Net for semantic segmentation
  72. 72 216 - Semantic segmentation using a small dataset for training (& U-Net)
  73. 73 218 - Difference between UpSampling2D and Conv2DTranspose used in U-Net and GAN
  74. 74 219 - Understanding U-Net architecture and building it from scratch
  75. 75 220 - What is the best loss function for semantic segmentation?
  76. 76 221 - Easy way to split data on your disk into train, test, and validation?
  77. 77 222 - Working with large data that doesn't fit your system memory - Semantic Segmentation
  78. 78 223 - Test time augmentation for semantic segmentation
  79. 79 224 - Recurrent and Residual U-net
  80. 80 225 - Attention U-net. What is attention and why is it needed for U-Net?
  81. 81 226 - U-Net vs Attention U-Net vs Attention Residual U-Net - should you care?
  82. 82 227 - Various U-Net models using keras unet collection library - for semantic image segmentation
  83. 83 228 - Semantic segmentation of aerial (satellite) imagery using U-net
  84. 84 229 - Smooth blending of patches for semantic segmentation of large images (using U-Net)
  85. 85 230 - Semantic Segmentation of Landcover Dataset using U-Net
  86. 86 231 - Semantic Segmentation of BraTS2020 - Part 0 - Introduction (and plan)

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.